<p>We propose a new self-normalized method for testing change points in the time series setting. Self-normalization has been celebrated for its ability to avoid direct estimation of the nuisance asymptotic variance and its flexibility of being generalized to handle quantities other than the mean. However, it was developed and mainly studied for constructing confidence intervals for quantities associated with a stationary time series, and its adaptation to change-point testing can be nontrivial as direct implementation can lead to tests with nonmonotonic power. Compared with existing results on using self-normalization in this direction, the current article proposes a new self-normalized change-point test that does not require prespecifying ...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
We developed a procedure to find change-points which seems both widely applicable and easy to implem...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
Statistical inference in time series analysis has been an important subject in various fields includ...
We propose a general framework to construct self-normalized multiple-change-point tests with time se...
We propose a novel and unified framework for change-point estimation in multivariate time series. Th...
We propose a location-adaptive self-normalization (SN) based test for change points in time series. ...
In this paper we propose a new approach for sequential monitoring of a parameter of a d-dimensional...
In this paper we develop methodology for testing relevant hypotheses in a tuning-free way. Our main...
In the common time series model Xi,n = μ(i/n)+"i,n with non-stationary errors we consider the proble...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
Statistical inference, such as confidence interval construction, change point detection and nonparam...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
We developed a procedure to find change-points which seems both widely applicable and easy to implem...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
Statistical inference in time series analysis has been an important subject in various fields includ...
We propose a general framework to construct self-normalized multiple-change-point tests with time se...
We propose a novel and unified framework for change-point estimation in multivariate time series. Th...
We propose a location-adaptive self-normalization (SN) based test for change points in time series. ...
In this paper we propose a new approach for sequential monitoring of a parameter of a d-dimensional...
In this paper we develop methodology for testing relevant hypotheses in a tuning-free way. Our main...
In the common time series model Xi,n = μ(i/n)+"i,n with non-stationary errors we consider the proble...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
Statistical inference, such as confidence interval construction, change point detection and nonparam...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
We developed a procedure to find change-points which seems both widely applicable and easy to implem...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...